Pitting corrosion prediction from cathodic data: application of machine learning

被引:3
作者
Boucherit, Mohamed Nadir [1 ]
Arbaoui, Fahd [1 ]
机构
[1] Ctr Rech Nucl Birine, Birine, Algeria
关键词
Machine learning; Pitting corrosion; LSTM; Cathodic currents; Conv1D;
D O I
10.1108/ACMM-06-2020-2334
中图分类号
TF [冶金工业];
学科分类号
0806 ;
摘要
Purpose To constitute input data, the authors carried out electrochemical experiments. The authors performed voltammetric scans in a very cathodic potential region. The authors constituted an experimental table where for each experiment we note the current values recorded at a low polarization range and the pitting potential observed in the anodic region. This study aims to concern carbon steel used in a nuclear installation. The properties of the chemical solutions are close to that of the cooling fluid used in the circuit. Design/methodology/approach In a previous study, this paper demonstrated the effectiveness of machine learning in predicting the localized corrosion resistance of a material by considering as input data the physicochemical properties of its environment (Boucherit et al., 2019). With the present study, the authors improve the results by considering as input data, cathodic currents. The reason of such an approach is to have input data that integrate both the surface state of the material and the physicochemical properties of its environment. Findings The experimental table was submitted to two neural networks, namely, a recurrent network and a convolution network. The convolution network gives better pitting potential predictions. Results also prove that the prediction by observing cathodic currents is better than that obtained by considering the physicochemical properties of the solution. Originality/value The originality of the study lies in the use of cathodic currents as input data. These data contain implicit information on both the chemical environment of the material and its surface condition. This approach appears to be more efficient than considering the chemical composition of the solution as input data. The objective of this study remains, at the same time, to seek the optimal neuronal architectures and the best input data.
引用
收藏
页码:396 / 403
页数:8
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